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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Traceable Porosity Measurements in Industrial Components Using X-Ray Computed Tomography
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Traceable Porosity Measurements in Industrial Components Using X-Ray Computed Tomography

机译:使用X射线计算机断层扫描的工业部件中可追踪孔隙度测量

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摘要

Manufacturing technologies deliver products that can suffer from various defects, one of which is internal porosity. Pores are present in most of the parts produced by, e.g., casting, additive manufacturing, and injection molding and can significantly affect the performance of the final products. Due to technological and economic limits, typically porosity cannot be completely removed by optimizing process parameters. It is therefore essential to have a measurement technique that can detect and evaluate these defects accurately. Apart from conventional nondestructive techniques. such as ultrasonic testing or Archimedes' method that suffer from various limitations, X-ray computed tomography has emerged as a promising solution capable of measuring size, spatial distribution, and shape of pores. In this paper, a method to achieve traceable computed tomography measurements of internal porosity using a reference object with calibrated internal artificial defects is described and demonstrated on an industrial case study. Furthermore, the possibility to improve measurement results by optimizing parameters used for the evaluation of acquired data is discussed. The optimization method is based on an iterative procedure that reduces to +/- 5 x 10(-5) mm(3) the error of the measured values of total void content in the reference object.
机译:制造技术提供患有各种缺陷的产品,其中一个是内部孔隙率。孔隙存在于由例如铸造,添加剂制造和注塑成型中产生的大多数部件中,并且可以显着影响最终产品的性能。由于技术和经济限制,通常通过优化工艺参数无法完全除去孔隙率。因此,必须具有可以准确地检测和评估这些缺陷的测量技术。除了传统的非破坏性技术。如超声波检测或Archimedes的患有各种局限性的方法,X射线计算机断层扫描已成为能够测量尺寸,空间分布和孔的形状的有前途的解决方案。在本文中,描述了使用具有校准内部人工缺陷的参考物体实现内部孔隙率可追踪的计算机断层扫描测量的方法。此外,讨论了通过优化用于评估获取数据的参数来改善测量结果的可能性。优化方法基于迭代过程,其减少到+/- 5 x 10(-5)mm(3)参考对象中总空隙内容的测量值的误差。

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